Saved in:
Bibliographic Details
Main Authors: Manocha, Pranay, Williamson, Donald, Finkelstein, Adam
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2310.09388
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917561778569216
author Manocha, Pranay
Williamson, Donald
Finkelstein, Adam
author_facet Manocha, Pranay
Williamson, Donald
Finkelstein, Adam
contents Perceptual evaluation constitutes a crucial aspect of various audio-processing tasks. Full reference (FR) or similarity-based metrics rely on high-quality reference recordings, to which lower-quality or corrupted versions of the recording may be compared for evaluation. In contrast, no-reference (NR) metrics evaluate a recording without relying on a reference. Both the FR and NR approaches exhibit advantages and drawbacks relative to each other. In this paper, we present a novel framework called CORN that amalgamates these dual approaches, concurrently training both FR and NR models together. After training, the models can be applied independently. We evaluate CORN by predicting several common objective metrics and across two different architectures. The NR model trained using CORN has access to a reference recording during training, and thus, as one would expect, it consistently outperforms baseline NR models trained independently. Perhaps even more remarkable is that the CORN FR model also outperforms its baseline counterpart, even though it relies on the same training data and the same model architecture. Thus, a single training regime produces two independently useful models, each outperforming independently trained models
format Preprint
id arxiv_https___arxiv_org_abs_2310_09388
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle CORN: Co-Trained Full- And No-Reference Speech Quality Assessment
Manocha, Pranay
Williamson, Donald
Finkelstein, Adam
Audio and Speech Processing
Machine Learning
Sound
Perceptual evaluation constitutes a crucial aspect of various audio-processing tasks. Full reference (FR) or similarity-based metrics rely on high-quality reference recordings, to which lower-quality or corrupted versions of the recording may be compared for evaluation. In contrast, no-reference (NR) metrics evaluate a recording without relying on a reference. Both the FR and NR approaches exhibit advantages and drawbacks relative to each other. In this paper, we present a novel framework called CORN that amalgamates these dual approaches, concurrently training both FR and NR models together. After training, the models can be applied independently. We evaluate CORN by predicting several common objective metrics and across two different architectures. The NR model trained using CORN has access to a reference recording during training, and thus, as one would expect, it consistently outperforms baseline NR models trained independently. Perhaps even more remarkable is that the CORN FR model also outperforms its baseline counterpart, even though it relies on the same training data and the same model architecture. Thus, a single training regime produces two independently useful models, each outperforming independently trained models
title CORN: Co-Trained Full- And No-Reference Speech Quality Assessment
topic Audio and Speech Processing
Machine Learning
Sound
url https://arxiv.org/abs/2310.09388